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Proceedings ArticleDOI

A time-varying subjective quality model for mobile streaming videos with stalling events

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TLDR
The proposed model accounts for and adapts to the recency, or hysteresis effect caused by a stall event in addition to accounting for the lengths, frequency of occurrence, and the positions of stall events - factors that interact in a complex way to affect a user's QoE.
Abstract
Over-the-top mobile video streaming is invariably influenced by volatile network conditions which cause playback interruptions (stalling events), thereby impairing users' quality of experience (QoE). Developing models that can accurately predict users' QoE could enable the more efficient design of quality-control protocols for video streaming networks that reduce network operational costs while still delivering high-quality video content to the customers. Existing objective models that predict QoE are based on global video features, such as the number of stall events and their lengths, and are trained and validated on a small pool of ad hoc video datasets, most of which are not publicly available. The model we propose in this work goes beyond previous models as it also accounts for the fundamental effect that a viewer's recent level of satisfaction or dissatisfaction has on their overall viewing experience. In other words, the proposed model accounts for and adapts to the recency, or hysteresis effect caused by a stall event in addition to accounting for the lengths, frequency of occurrence, and the positions of stall events - factors that interact in a complex way to affect a user's QoE. On the recently introduced LIVE-Avvasi Mobile Video Database, which consists of 180 distorted videos of varied content that are afflicted solely with over 25 unique realistic stalling events, we trained and validated our model to accurately predict the QoE, attaining standout QoE prediction performance.

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Citations
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Journal ArticleDOI

A Quality-of-Experience Index for Streaming Video

TL;DR: This work builds a streaming video database and carries out a subjective user study to investigate the human responses to the combined effect of video compression, initial buffering, and stalling, and proposes a novel QoE prediction approach named Streaming QOE Index that accounts for the instantaneous quality degradation due to perceptual video presentation impairment, the playback stalling events, and the instantaneous interactions between them.
Journal ArticleDOI

A Subjective and Objective Study of Stalling Events in Mobile Streaming Videos

TL;DR: A new mobile video quality database that contains videos afflicted with distortions caused by 26 different stalling patterns, and is making the database publicly available in order to help the advance state-of-the-art research on user-centric mobile network planning and management.
Journal ArticleDOI

Recurrent and Dynamic Models for Predicting Streaming Video Quality of Experience

TL;DR: A variety of recurrent dynamic neural networks are proposed that conduct continuous-time subjective QoE prediction on video streams impaired by both compression artifacts and rebuffering events, and ways of aggregating different models into a forecasting ensemble that delivers improved results with reduced forecasting variance are evaluated.
Journal ArticleDOI

Learning a Continuous-Time Streaming Video QoE Model.

TL;DR: A QoE evaluator that accounts for interactions between stalling events, analyzes the spatial and temporal content of a video, predicts the perceptual video quality, models the state of the client-side data buffer, and consequently predicts continuous-time quality scores that agree quite well with human opinion scores is created.
Journal ArticleDOI

Continuous Prediction of Streaming Video QoE Using Dynamic Networks

TL;DR: This work proposes a first of a kind continuous QoE prediction engine based on a nonlinear autoregressive model with exogenous outputs that is driven by an objective measure of perceptual video quality, rebuffering-aware information, and aQoE memory descriptor that accounts for recency.
References
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Book

System Identification: Theory for the User

Lennart Ljung
TL;DR: Das Buch behandelt die Systemidentifizierung in dem theoretischen Bereich, der direkte Auswirkungen auf Verstaendnis and praktische Anwendung der verschiedenen Verfahren zur IdentifIZierung hat.
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The visible differences predictor: an algorithm for the assessment of image fidelity

Scott Daly
TL;DR: In this paper, an algorithm for determining whether the goal of image fidelity is met as a function of display parameters and viewing conditions is presented, which is intended for the design and analysis of image processing algorithms, imaging systems, and imaging media.
Proceedings ArticleDOI

Understanding the impact of video quality on user engagement

TL;DR: This paper uses a unique dataset that spans different content types, including short video on demand, long VoD, and live content from popular video con- tent providers, to measure quality metrics such as the join time, buffering ratio, average bitrate, rendering quality, and rate of buffering events.
Proceedings ArticleDOI

Perceptual image distortion

TL;DR: A perceptual distortion measure that predicts image integrity far better than mean-squared error and the usefulness of the model in predicting perceptual distortion in real images is illustrated.
Proceedings ArticleDOI

Measuring the quality of experience of HTTP video streaming

TL;DR: Analysis of the relationship among three levels of quality of service (QoS) of HTTP video streaming reveals that the frequency of rebuffering is the main factor responsible for the variations in the QoE.
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